Abstract

Background: Searching through the COVID-19 research literature to gain actionable clinical insight is a formidable task, even for experts. The usefulness of this corpus in terms of improving patient care is tied to the ability to see the big picture that emerges when the studies are seen in conjunction rather than in isolation. When the answer to a search query requires linking together multiple pieces of information across documents, simple keyword searches are insufficient. To answer such complex information needs, an innovative artificial intelligence (AI) technology named a knowledge graph (KG) could prove to be effective. Methods: We conducted an exploratory literature review of KG applications in the context of COVID-19. The search term used was “covid-19 knowledge graph”. In addition to PubMed, the first five pages of search results for Google Scholar and Google were considered for inclusion. Google Scholar was used to include non-peer-reviewed or non-indexed articles such as pre-prints and conference proceedings. Google was used to identify companies or consortiums active in this domain that have not published any literature, peer-reviewed or otherwise. Results: Our search yielded 34 results on PubMed and 50 results each on Google and Google Scholar. We found KGs being used for facilitating literature search, drug repurposing, clinical trial mapping, and risk factor analysis. Conclusions: Our synopses of these works make a compelling case for the utility of this nascent field of research.

Highlights

  • Due to the truly global nature of the COVID-19 pandemic, there has been an explosion of academic literature on this subject in 2020

  • The aim of this review is to identify the different applications of knowledge graph (KG) with respect to COVID-19, even if such research is not mature enough to have been published in peer-reviewed journals that are indexed by PubMed, which is focused on biomedical journals

  • We provided detailed summaries of the methodologies that were used in these publications, making this article interesting for researchers and clinicians focusing on COVID-19, and readers interested in implementing KGs in other domains, including other diseases which have a high volume of research output being generated

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Summary

Introduction

Due to the truly global nature of the COVID-19 pandemic, there has been an explosion of academic literature on this subject in 2020. Searching through the COVID-19 research literature to gain actionable clinical insight is a formidable task, even for experts. The usefulness of this corpus in terms of improving patient care is tied to the ability to see the big picture that emerges when the studies are seen in conjunction rather than in isolation. When the answer to a search query requires linking together multiple pieces of information across documents, simple keyword searches are insufficient. To answer such complex information needs, an innovative artificial intelligence (AI) technology named a knowledge graph (KG) could prove to be effective. Conclusions: Our synopses of these works make a compelling case for the utility of this nascent field of research

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